Progress Indication for Machine Learning Model Building: A Feasibility Demonstration.

Gang Luo
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引用次数: 3

Abstract

Progress indicators are desirable for machine learning model building that often takes a long time, by continuously estimating the remaining model building time and the portion of model building work that has been finished. Recently, we proposed a high-level framework using system approaches to support non-trivial progress indicators for machine learning model building, but offered no detailed implementation technique. It remains to be seen whether it is feasible to provide such progress indicators. In this paper, we fill this gap and give the first demonstration that offering such progress indicators is viable. We describe detailed progress indicator implementation techniques for three major, supervised machine learning algorithms. We report an implementation of these techniques in Weka.

Abstract Image

Abstract Image

Abstract Image

机器学习模型构建的进展指示:可行性论证。
对于通常需要很长时间的机器学习模型构建,通过持续估计剩余的模型构建时间和已经完成的模型构建工作部分,进度指标是理想的。最近,我们提出了一个高级框架,使用系统方法来支持机器学习模型构建的重要进展指标,但没有提供详细的实现技术。提供这种进度指标是否可行还有待观察。在本文中,我们填补了这一空白,并首次证明了提供这种进度指标是可行的。我们详细描述了三种主要的监督机器学习算法的进度指标实现技术。我们将报告这些技术在Weka中的实现。
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